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通过人类转录调控网络进行癌症治疗中的药物筛选和生物标志物基因研究。

Drug screening and biomarker gene investigation in cancer therapy through the human transcriptional regulatory network.

作者信息

He Zihao, Gao Kai, Dong Lei, Liu Liu, Qu Xinchi, Zou Zhengkai, Wu Yang, Bu Dechao, Guo Jin-Cheng, Zhao Yi

机构信息

School of Traditional Chinese Medicine, Beijing University of Chinese Medicine, Beijing 100029, China.

Research Center for Ubiquitous Computing Systems, Institute of Computing Technology, Chinese Academy of Sciences, Beijing 100190, China.

出版信息

Comput Struct Biotechnol J. 2023 Feb 8;21:1557-1572. doi: 10.1016/j.csbj.2023.02.005. eCollection 2023.

Abstract

A complex and vast biological network regulates all biological functions in the human body in a sophisticated manner, and abnormalities in this network can lead to disease and even cancer. The construction of a high-quality human molecular interaction network is possible with the development of experimental techniques that facilitate the interpretation of the mechanisms of drug treatment for cancer. We collected 11 molecular interaction databases based on experimental sources and constructed a human protein-protein interaction (PPI) network and a human transcriptional regulatory network (HTRN). A random walk-based graph embedding method was used to calculate the diffusion profiles of drugs and cancers, and a pipeline was constructed by using five similarity comparison metrics combined with a rank aggregation algorithm, which can be implemented for drug screening and biomarker gene prediction. Taking NSCLC as an example, curcumin was identified as a potentially promising anticancer drug from 5450 natural small molecules, and combined with differentially expressed genes, survival analysis, and topological ranking, we obtained BIRC5 (survivin), which is both a biomarker for NSCLC and a key target for curcumin. Finally, the binding mode of curcumin and survivin was explored using molecular docking. This work has a guiding significance for antitumor drug screening and the identification of tumor markers.

摘要

一个复杂而庞大的生物网络以精妙的方式调节着人体的所有生物功能,该网络的异常会导致疾病甚至癌症。随着有助于解释癌症药物治疗机制的实验技术的发展,构建高质量的人类分子相互作用网络成为可能。我们基于实验来源收集了11个分子相互作用数据库,并构建了一个人类蛋白质-蛋白质相互作用(PPI)网络和一个人类转录调控网络(HTRN)。使用基于随机游走的图嵌入方法来计算药物和癌症的扩散概况,并通过结合五种相似性比较指标和秩聚合算法构建了一个流程,可用于药物筛选和生物标志物基因预测。以非小细胞肺癌(NSCLC)为例,从5450种天然小分子中鉴定出姜黄素是一种潜在的有前景的抗癌药物,结合差异表达基因、生存分析和拓扑排序,我们获得了BIRC5(生存素),它既是NSCLC的生物标志物,也是姜黄素的关键靶点。最后,使用分子对接探索了姜黄素与生存素的结合模式。这项工作对抗肿瘤药物筛选和肿瘤标志物的鉴定具有指导意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/347e/9984461/b04a31dd87ae/ga1.jpg

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